International Journal of General Medicine (May 2024)

Impact of Diabetes Mellitus on Heart Failure Patients: Insights from a Comprehensive Analysis and Machine Learning Model Using the Jordanian Heart Failure Registry

  • Izraiq M,
  • Almousa E,
  • Hammoudeh S,
  • Sudqi M,
  • Ahmed YB,
  • Abu-Dhaim OA,
  • Mughrabi Sabbagh AL,
  • Khraim KI,
  • Toubasi AA,
  • Al-Kasasbeh A,
  • Rawashdeh S,
  • Abu-Hantash H

Journal volume & issue
Vol. Volume 17
pp. 2253 – 2264

Abstract

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Mahmoud Izraiq,1 Eyas Almousa,2 Suhail Hammoudeh,1 Mazen Sudqi,1 Yaman B Ahmed,3 Omran A Abu-Dhaim,1 Abdel-Latif Mughrabi Sabbagh,1 Karam I Khraim,1 Ahmad A Toubasi,4 Abdullah Al-Kasasbeh,3 Sukaina Rawashdeh,3 Hadi Abu-Hantash5 1Cardiology Section, Internal Medicine Department, Specialty Hospital, Amman, Jordan; 2Department of Cardiology, Istishari Hospital, Amman, Jordan; 3Cardiology Section, Internal Medicine Department, King Abdullah University Hospital, Irbid, Jordan; 4Cardiology Section, Internal Medicine Department, Jordan University Hospital, Amman, Jordan; 5Department of Cardiology, Amman Surgical Hospital, Amman, JordanCorrespondence: Mahmoud Izraiq, Cardiology Section, Internal Medicine Department, Specialty Hospital, Amman, Jordan, Tel +962795652260, Email [email protected]: Heart failure (HF) is a common final pathway of various insults to the heart, primarily from risk factors including diabetes mellitus (DM) type 2. This study analyzed the clinical characteristics of HF in a Jordanian population with a particular emphasis on the relationship between DM and HF.Methods: This prospective study used the Jordanian Heart Failure Registry (JoHFR) data. Patients with HF were characterized by DM status and HF type: HF with preserved ejection fraction (HFpEF) or HF with reduced ejection fraction (HFrEF). Demographics, clinical presentations, and treatment outcomes were collected. Statistical analyses and machine learning techniques were carried out for the prediction of mortality among HF patients: Recursive Feature Elimination with Cross-Validation (RFECV) and Synthetic Minority Over-sampling Technique with Edited Nearest Neighbors (SMOTEENN) were employed.Results: A total of 2007 patients with HF were included. Notable differences between diabetic and non-diabetic patients are apparent. Diabetic patients were predominantly male, older, and obese (p 115 μmol/L, length of hospital stay, and need for mechanical ventilation.Conclusion: This study underscores notable differences in clinical characteristics and outcomes between diabetic and non-diabetic heart failure patients in Jordan. Diabetic patients had higher prevalence of HFpEF and poorer health indicators such as elevated cholesterol, LDL, and impaired kidney function. High creatinine levels, longer hospital stays, and the need for mechanical ventilation were key predictors of mortality.Keywords: heart failure, diabetes mellitus, Jordan, clinical characteristics, machine learning, mortality prediction, predictive analytics

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